2019
DOI: 10.35940/ijrte.c5141.098319
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AEAO: Auto Encoder with Adam Optimizer Method for Efficient Document Indexing of Big Data

Abstract: In the big data era, the document classification became an active research area due to the explosive nature in the volumes of data. Document Indexing is one of the important tasks under text classification. The objective of this research is to increase the performance of the document indexing by proposing Adam optimizer in the auto-encoder. Due to the larger dimension and multi-class classification problem, the accuracy of document indexing is reduced. In this paper, an enhanced auto encoder is used based on t… Show more

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“…Dropout for better generalisation was set to 0.2. Adam optimiser with lr=5e-3 (Krishna Bhargavi et al, 2019) was used for training. Regularisation for weights 5e-4 was also added.…”
Section: Preparation Of the Neural Networkmentioning
confidence: 99%
“…Dropout for better generalisation was set to 0.2. Adam optimiser with lr=5e-3 (Krishna Bhargavi et al, 2019) was used for training. Regularisation for weights 5e-4 was also added.…”
Section: Preparation Of the Neural Networkmentioning
confidence: 99%